/*=========================================================================
 *
 *  Copyright Insight Software Consortium
 *
 *  Licensed under the Apache License, Version 2.0 (the "License");
 *  you may not use this file except in compliance with the License.
 *  You may obtain a copy of the License at
 *
 *         http://www.apache.org/licenses/LICENSE-2.0.txt
 *
 *  Unless required by applicable law or agreed to in writing, software
 *  distributed under the License is distributed on an "AS IS" BASIS,
 *  WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
 *  See the License for the specific language governing permissions and
 *  limitations under the License.
 *
 *=========================================================================*/

#include "itkImageFileReader.h"
#include "itkImageFileWriter.h"

#include "itkImageRegionIterator.h"

// Software Guide : BeginLatex
//
// This example demonstrates how to use the level set motion to deformably
// register two images. The first step is to include the header files.
//
// Software Guide : EndLatex

// Software Guide : BeginCodeSnippet
#include "itkLevelSetMotionRegistrationFilter.h"
#include "itkHistogramMatchingImageFilter.h"
#include "itkCastImageFilter.h"
#include "itkDisplacementFieldTransform.h"
#include "itkResampleImageFilter.h"
// Software Guide : EndCodeSnippet

//  The following section of code implements a Command observer
//  that will monitor the evolution of the registration process.
//
class CommandIterationUpdate : public itk::Command
{
public:
  using Self = CommandIterationUpdate;
  using Superclass = itk::Command;
  using Pointer = itk::SmartPointer<CommandIterationUpdate>;
  itkNewMacro(CommandIterationUpdate);

protected:
  CommandIterationUpdate() = default;

  using InternalImageType = itk::Image<float, 2>;
  using VectorPixelType = itk::Vector<float, 2>;
  using DisplacementFieldType = itk::Image<VectorPixelType, 2>;

  using RegistrationFilterType =
    itk::LevelSetMotionRegistrationFilter<InternalImageType,
                                          InternalImageType,
                                          DisplacementFieldType>;

public:
  void
  Execute(itk::Object * caller, const itk::EventObject & event) override
  {
    Execute((const itk::Object *)caller, event);
  }

  void
  Execute(const itk::Object * object, const itk::EventObject & event) override
  {
    const auto * filter = static_cast<const RegistrationFilterType *>(object);
    if (filter == nullptr)
    {
      return;
    }
    if (!(itk::IterationEvent().CheckEvent(&event)))
    {
      return;
    }
    std::cout << filter->GetMetric() << std::endl;
  }
};

int
main(int argc, char * argv[])
{
  if (argc < 4)
  {
    std::cerr << "Missing Parameters " << std::endl;
    std::cerr << "Usage: " << argv[0];
    std::cerr << " fixedImageFile movingImageFile ";
    std::cerr << " outputImageFile " << std::endl;
    std::cerr << " [outputDisplacementFieldFile] " << std::endl;
    return EXIT_FAILURE;
  }

  // Software Guide : BeginLatex
  //
  // Second, we declare the types of the images.
  //
  // Software Guide : EndLatex

  // Software Guide : BeginCodeSnippet
  constexpr unsigned int Dimension = 2;
  using PixelType = unsigned short;

  using FixedImageType = itk::Image<PixelType, Dimension>;
  using MovingImageType = itk::Image<PixelType, Dimension>;
  // Software Guide : EndCodeSnippet

  // Set up the file readers
  using FixedImageReaderType = itk::ImageFileReader<FixedImageType>;
  using MovingImageReaderType = itk::ImageFileReader<MovingImageType>;

  FixedImageReaderType::Pointer  fixedImageReader = FixedImageReaderType::New();
  MovingImageReaderType::Pointer movingImageReader = MovingImageReaderType::New();

  fixedImageReader->SetFileName(argv[1]);
  movingImageReader->SetFileName(argv[2]);


  // Software Guide : BeginLatex
  //
  // Image file readers are set up in a similar fashion to previous examples.
  // To support the re-mapping of the moving image intensity, we declare an
  // internal image type with a floating point pixel type and cast the input
  // images to the internal image type.
  //
  // Software Guide : EndLatex

  // Software Guide : BeginCodeSnippet
  using InternalPixelType = float;
  using InternalImageType = itk::Image<InternalPixelType, Dimension>;
  using FixedImageCasterType = itk::CastImageFilter<FixedImageType, InternalImageType>;
  using MovingImageCasterType =
    itk::CastImageFilter<MovingImageType, InternalImageType>;

  FixedImageCasterType::Pointer  fixedImageCaster = FixedImageCasterType::New();
  MovingImageCasterType::Pointer movingImageCaster = MovingImageCasterType::New();

  fixedImageCaster->SetInput(fixedImageReader->GetOutput());
  movingImageCaster->SetInput(movingImageReader->GetOutput());
  // Software Guide : EndCodeSnippet

  // Software Guide : BeginLatex
  //
  // The level set motion algorithm relies on the assumption that
  // pixels representing the same homologous point on an object have
  // the same intensity on both the fixed and moving images to be
  // registered. In this example, we will preprocess the moving image
  // to match the intensity between the images using the
  // \doxygen{HistogramMatchingImageFilter}.
  //
  // \index{itk::HistogramMatchingImageFilter}
  //
  // The basic idea is to match the histograms of the two images at a user-specified
  // number of quantile values. For robustness, the histograms are matched so that the
  // background pixels are excluded from both histograms. For MR images, a simple
  // procedure is to exclude all gray values smaller than the mean gray value of the
  // image.
  //
  // Software Guide : EndLatex

  // Software Guide : BeginCodeSnippet
  using MatchingFilterType =
    itk::HistogramMatchingImageFilter<InternalImageType, InternalImageType>;
  MatchingFilterType::Pointer matcher = MatchingFilterType::New();
  // Software Guide : EndCodeSnippet


  // Software Guide : BeginLatex
  //
  // For this example, we set the moving image as the source or input image and
  // the fixed image as the reference image.
  //
  // \index{itk::HistogramMatchingImageFilter!SetInput()}
  // \index{itk::HistogramMatchingImageFilter!SetSourceImage()}
  // \index{itk::HistogramMatchingImageFilter!SetReferenceImage()}
  //
  // Software Guide : EndLatex

  // Software Guide : BeginCodeSnippet
  matcher->SetInput(movingImageCaster->GetOutput());
  matcher->SetReferenceImage(fixedImageCaster->GetOutput());
  // Software Guide : EndCodeSnippet


  // Software Guide : BeginLatex
  //
  // We then select the number of bins to represent the histograms and the
  // number of points or quantile values where the histogram is to be
  // matched.
  //
  // \index{itk::HistogramMatchingImageFilter!SetNumberOfHistogramLevels()}
  // \index{itk::HistogramMatchingImageFilter!SetNumberOfMatchPoints()}
  //
  // Software Guide : EndLatex

  // Software Guide : BeginCodeSnippet
  matcher->SetNumberOfHistogramLevels(1024);
  matcher->SetNumberOfMatchPoints(7);
  // Software Guide : EndCodeSnippet


  // Software Guide : BeginLatex
  //
  // Simple background extraction is done by thresholding at the mean
  // intensity.
  //
  // \index{itk::HistogramMatchingImageFilter!ThresholdAtMeanIntensityOn()}
  //
  // Software Guide : EndLatex

  // Software Guide : BeginCodeSnippet
  matcher->ThresholdAtMeanIntensityOn();
  // Software Guide : EndCodeSnippet


  // Software Guide : BeginLatex
  //
  // In the \doxygen{LevelSetMotionRegistrationFilter}, the
  // deformation field is represented as an image whose pixels are
  // floating point vectors.
  //
  // \index{itk::LevelSetMotionRegistrationFilter}
  //
  // Software Guide : EndLatex

  // Software Guide : BeginCodeSnippet
  using VectorPixelType = itk::Vector<float, Dimension>;
  using DisplacementFieldType = itk::Image<VectorPixelType, Dimension>;
  using RegistrationFilterType =
    itk::LevelSetMotionRegistrationFilter<InternalImageType,
                                          InternalImageType,
                                          DisplacementFieldType>;
  RegistrationFilterType::Pointer filter = RegistrationFilterType::New();
  // Software Guide : EndCodeSnippet

  // Create the Command observer and register it with the registration filter.
  //
  CommandIterationUpdate::Pointer observer = CommandIterationUpdate::New();
  filter->AddObserver(itk::IterationEvent(), observer);

  // Software Guide : BeginLatex
  //
  // The input fixed image is simply the output of the fixed image casting
  // filter.  The input moving image is the output of the histogram matching
  // filter.
  //
  // \index{itk::LevelSetMotionRegistrationFilter!SetFixedImage()}
  // \index{itk::LevelSetMotionRegistrationFilter!SetMovingImage()}
  //
  // Software Guide : EndLatex

  // Software Guide : BeginCodeSnippet
  filter->SetFixedImage(fixedImageCaster->GetOutput());
  filter->SetMovingImage(matcher->GetOutput());

  // Software Guide : EndCodeSnippet


  // Software Guide : BeginLatex
  //
  // The level set motion registration filter has two parameters: the
  // number of iterations to be performed and the standard deviation
  // of the Gaussian smoothing kernel to be applied to the image prior
  // to calculating gradients.
  // \index{itk::LevelSetMotionRegistrationFilter!SetNumberOfIterations()}
  // \index{itk::LevelSetMotionRegistrationFilter!SetStandardDeviations()}
  //
  // Software Guide : EndLatex

  // Software Guide : BeginCodeSnippet
  filter->SetNumberOfIterations(50);
  filter->SetGradientSmoothingStandardDeviations(4);
  // Software Guide : EndCodeSnippet


  // Software Guide : BeginLatex
  //
  // The registration algorithm is triggered by updating the filter. The
  // filter output is the computed deformation field.
  //
  // Software Guide : EndLatex

  // Software Guide : BeginCodeSnippet
  filter->Update();
  // Software Guide : EndCodeSnippet


  // Software Guide : BeginLatex
  //
  // The \doxygen{ResampleImageFilter} can be used to warp the moving image with
  // the output deformation field. The \doxygen{ResampleImageFilter}
  // requires specifications for the input image to be resampled: an
  // input image interpolator, a transform, and the output image's
  // meta-data can be set from a reference image.
  //
  // \index{itk::ResampleImageFilter}
  // \index{itk::ResampleImageFilter!SetInput()}
  // \index{itk::ResampleImageFilter!SetReferenceImage()}
  //
  // Software Guide : EndLatex

  // Software Guide : BeginCodeSnippet
  using InterpolatorPrecisionType = double;
  using TransformPrecisionType = float;
  using WarperType = itk::ResampleImageFilter<MovingImageType,
                                              MovingImageType,
                                              InterpolatorPrecisionType,
                                              TransformPrecisionType>;
  using InterpolatorType =
    itk::LinearInterpolateImageFunction<MovingImageType, InterpolatorPrecisionType>;
  WarperType::Pointer       warper = WarperType::New();
  InterpolatorType::Pointer interpolator = InterpolatorType::New();
  FixedImageType::Pointer   fixedImage = fixedImageReader->GetOutput();

  warper->SetInput(movingImageReader->GetOutput());
  warper->SetInterpolator(interpolator);
  warper->UseReferenceImageOn();
  warper->SetReferenceImage(fixedImage);
  // Software Guide : EndCodeSnippet


  // Software Guide : BeginLatex
  //
  // The displacement field is not an itk::Transform type. The
  // ResampleImageFilter requires an itk::Transform as input, so a
  // DisplacementFieldTransform needs to be constructed. The
  // resulting warped or resampled  image is written to file as per
  // previous examples.
  //
  // \index{itk::ResampleImageFilter!SetTransform()}
  //
  // Software Guide : EndLatex

  // Software Guide : BeginCodeSnippet
  using DisplacementFieldTransformType =
    itk::DisplacementFieldTransform<TransformPrecisionType, Dimension>;
  auto displacementTransform = DisplacementFieldTransformType::New();
  displacementTransform->SetDisplacementField(filter->GetOutput());
  warper->SetTransform(displacementTransform);
  // Software Guide : EndCodeSnippet

  // Write warped image out to file
  using OutputPixelType = unsigned char;
  using OutputImageType = itk::Image<OutputPixelType, Dimension>;
  using CastFilterType = itk::CastImageFilter<MovingImageType, OutputImageType>;
  using WriterType = itk::ImageFileWriter<OutputImageType>;

  WriterType::Pointer     writer = WriterType::New();
  CastFilterType::Pointer caster = CastFilterType::New();

  writer->SetFileName(argv[3]);

  caster->SetInput(warper->GetOutput());
  writer->SetInput(caster->GetOutput());
  writer->Update();


  // Software Guide : BeginLatex
  //
  // Let's execute this example using the rat lung data from the previous example.
  // The associated data files can be found in \code{Examples/Data}:
  //
  // \begin{itemize}
  // \item \code{RatLungSlice1.mha}
  // \item \code{RatLungSlice2.mha}
  // \end{itemize}
  //
  // \begin{figure} \center
  // \includegraphics[width=0.44\textwidth]{DeformableRegistration2CheckerboardBefore}
  // \includegraphics[width=0.44\textwidth]{DeformableRegistration2CheckerboardAfter}
  // \itkcaption[Demon's deformable registration output]{Checkerboard comparisons
  // before and after demons-based deformable registration.}
  // \label{fig:DeformableRegistration5Output}
  // \end{figure}
  //
  // The result of the demons-based deformable registration is presented in
  // Figure \ref{fig:DeformableRegistration5Output}. The checkerboard
  // comparison shows that the algorithm was able to recover the misalignment
  // due to expiration.
  //
  // Software Guide : EndLatex

  // Software Guide : BeginLatex
  //
  // It may be also desirable to write the deformation field as an image of
  // vectors.  This can be done with the following code.
  //
  // Software Guide : EndLatex

  if (argc > 4) // if a fourth line argument has been provided...
  {

    // Software Guide : BeginCodeSnippet
    using FieldWriterType = itk::ImageFileWriter<DisplacementFieldType>;
    FieldWriterType::Pointer fieldWriter = FieldWriterType::New();
    fieldWriter->SetFileName(argv[4]);
    fieldWriter->SetInput(filter->GetOutput());

    fieldWriter->Update();
    // Software Guide : EndCodeSnippet

    // Software Guide : BeginLatex
    //
    // Note that the file format used for writing the deformation field must be
    // capable of representing multiple components per pixel. This is the case
    // for the MetaImage and VTK file formats.
    //
    // Software Guide : EndLatex
  }


  if (argc > 5) // if a fifth line argument has been provided...
  {

    using VectorImage2DType = DisplacementFieldType;
    using Vector2DType = DisplacementFieldType::PixelType;

    VectorImage2DType::ConstPointer vectorImage2D = filter->GetOutput();

    VectorImage2DType::RegionType region2D = vectorImage2D->GetBufferedRegion();
    VectorImage2DType::IndexType  index2D = region2D.GetIndex();
    VectorImage2DType::SizeType   size2D = region2D.GetSize();


    using Vector3DType = itk::Vector<float, 3>;
    using VectorImage3DType = itk::Image<Vector3DType, 3>;

    using VectorImage3DWriterType = itk::ImageFileWriter<VectorImage3DType>;

    VectorImage3DWriterType::Pointer writer3D = VectorImage3DWriterType::New();

    VectorImage3DType::Pointer vectorImage3D = VectorImage3DType::New();

    VectorImage3DType::RegionType region3D;
    VectorImage3DType::IndexType  index3D;
    VectorImage3DType::SizeType   size3D;

    index3D[0] = index2D[0];
    index3D[1] = index2D[1];
    index3D[2] = 0;

    size3D[0] = size2D[0];
    size3D[1] = size2D[1];
    size3D[2] = 1;

    region3D.SetSize(size3D);
    region3D.SetIndex(index3D);

    VectorImage2DType::SpacingType spacing2D = vectorImage2D->GetSpacing();
    VectorImage3DType::SpacingType spacing3D;

    spacing3D[0] = spacing2D[0];
    spacing3D[1] = spacing2D[1];
    spacing3D[2] = 1.0;

    vectorImage3D->SetSpacing(spacing3D);

    vectorImage3D->SetRegions(region3D);
    vectorImage3D->Allocate();

    using Iterator2DType = itk::ImageRegionConstIterator<VectorImage2DType>;
    using Iterator3DType = itk::ImageRegionIterator<VectorImage3DType>;

    Iterator2DType it2(vectorImage2D, region2D);
    Iterator3DType it3(vectorImage3D, region3D);

    it2.GoToBegin();
    it3.GoToBegin();

    Vector2DType vector2D;
    Vector3DType vector3D;

    vector3D[2] = 0; // set Z component to zero.

    while (!it2.IsAtEnd())
    {
      vector2D = it2.Get();
      vector3D[0] = vector2D[0];
      vector3D[1] = vector2D[1];
      it3.Set(vector3D);
      ++it2;
      ++it3;
    }

    writer3D->SetInput(vectorImage3D);
    writer3D->SetFileName(argv[5]);

    try
    {
      writer3D->Update();
    }
    catch (const itk::ExceptionObject & excp)
    {
      std::cerr << excp << std::endl;
      return EXIT_FAILURE;
    }
  }
  return EXIT_SUCCESS;
}
